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首页> 外文期刊>IEEE Transactions on Robotics >Probabilistic Modeling and Bayesian Filtering for Improved State Estimation for Soft Robots
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Probabilistic Modeling and Bayesian Filtering for Improved State Estimation for Soft Robots

机译:概率建模和贝叶斯滤波改进柔软机器人的状态估计

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State estimation is one of the key requirements in robot control, which has been achieved by kinematic and dynamic models combined with motion sensors in traditional robotics. However, it is challenging to acquire accurate proprioceptive information in soft robots due to relatively high noise levels and hysteretic responses of soft actuators and sensors. In this article, we propose a method of estimating real-time states of soft robots by filtering noisy output signals and including hysteresis in the models using a Bayesian network. This approach is useful in constructing a state observer for soft robot control when both the kinematic model of the actuator and the model of the sensor are used. In our method, we regard a hysteresis function as a conditional random process model. We then introduce a dynamic Bayesian network composed of the actuator and the sensor models of the target system using distribution hysteresis mapping. Finally, we show that solving a Bayesian filtering problem is equivalent to suboptimal state estimation of the soft system. This article describes two ways for defining modeling and filtering; one is by Gaussian process regression combined with an extended Kalman filter, and the other is based on variational inference with a particle filter. While the first approach relaxes the uncertainty level in modeling to Gaussian, the second approach illustrates a general probability distribution. We experimentally validate the proposed methods through real-time state estimation of a sensor-integrated soft robotic gripper. The result shows significant improvement in state estimation compared to conventional estimation methods.
机译:状态估计是机器人控制中的关键要求之一,通过传统机器人中的运动传感器与运动传感器相结合的运动和动态模型已经实现。然而,由于噪声水平相对高的噪声水平和软致动器和传感器的滞后响应,在软机器人中获取准确的预言信息充满挑战。在本文中,我们提出了一种通过过滤噪声输出信号来估计软机器人的实时状态,并使用贝叶斯网络在模型中滞后。当使用致动器的运动模型和传感器的模型时,这种方法可用于构造用于软机器人控制的状态观察者。在我们的方法中,我们将滞后函数视为条件随机过程模型。然后,我们使用分配滞后映射引入由执行器和目标系统的传感器模型组成的动态贝叶斯网络。最后,我们表明,解决贝叶斯过滤问题等同于软系统的次优估计。本文介绍了定义建模和过滤的两种方式;一种是通过高斯过程回归与扩展卡尔曼滤波器组合,另一个基于粒子滤波器的变分推理。虽然第一种方法放宽了对高斯建模的不确定性水平,但是第二种方法说明了一般概率分布。我们通过对传感器集成的软机器人夹具的实时估计进行实验验证所提出的方法。与常规估计方法相比,该结果显示了状态估计的显着改善。

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